Healthcare-associated infections in patients with severe COVID-19 supported with extracorporeal membrane oxygenation: a nationwide cohort study

Background Both critically ill patients with coronavirus disease 2019 (COVID-19) and patients receiving extracorporeal membrane oxygenation (ECMO) support exhibit a high incidence of healthcare-associated infections (HAI). However, data on incidence, microbiology, resistance patterns, and the impact of HAI on outcomes in patients receiving ECMO for severe COVID-19 remain limited. We aimed to report HAI incidence and microbiology in patients receiving ECMO for severe COVID-19 and to evaluate the impact of ECMO-associated infections (ECMO-AI) on in-hospital mortality. Methods For this study, we analyzed data from 701 patients included in the ECMOSARS registry which included COVID-19 patients supported by ECMO in France. Results Among 602 analyzed patients for whom HAI and hospital mortality data were available, 214 (36%) had ECMO-AI, resulting in an incidence rate of 27 ECMO-AI per 1000 ECMO days at risk. Of these, 154 patients had bloodstream infection (BSI) and 117 patients had ventilator-associated pneumonia (VAP). The responsible microorganisms were Enterobacteriaceae (34% for BSI and 48% for VAP), Enterococcus species (25% and 6%, respectively) and non-fermenting Gram-negative bacilli (13% and 20%, respectively). Fungal infections were also observed (10% for BSI and 3% for VAP), as were multidrug-resistant organisms (21% and 15%, respectively). Using a Cox multistate model, ECMO-AI were not found associated with hospital death (HR = 1.00 95% CI [0.79–1.26], p = 0.986). Conclusions In a nationwide cohort of COVID-19 patients receiving ECMO support, we observed a high incidence of ECMO-AI. ECMO-AI were not found associated with hospital death. Trial registration number NCT04397588 (May 21, 2020). Supplementary Information The online version contains supplementary material available at 10.1186/s13054-024-04832-3.


Background
Healthcare-associated infections (HAI) are frequent in patients receiving extracorporeal membrane oxygenation (ECMO) support [1,2].Likewise, critically ill patients with coronavirus disease 2019 (COVID-19) have a higher incidence of HAI compared to non-COVID-19 critically ill patients or those admitted to intensive care unit (ICU) before the pandemic [3][4][5].Both ECMO support and severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) induce immune alterations that may increase the susceptibility to HAI [6,7].A recent European multicenter study reported high incidences of ventilator-associated pneumonia (VAP) and bloodstream infections (BSI) in COVID-19 patients on ECMO [8].Yet, data on microbiology, resistance patterns, and its impact on the outcomes in patients receiving ECMO for severe COVID-19 remain limited [9].The primary objective of this prospective multicenter cohort study was to report the incidence and microbiology of HAI in patients receiving ECMO for severe COVID-19.The secondary objective was to evaluate the impact of ECMO associated infections (ECMO-AI) on patient outcomes.We hypothesized that the incidence of ECMO-AI would be high and associated with worse outcomes in patients receiving ECMO for severe COVID-19.

Data collection
The French national Extracorporeal Membrane Oxygenation for Respiratory Failure and/or Heart failure related to Severe Acute Respiratory Syndrome-Coronavirus 2 (ECMOSARS) registry recruited all COVID-19 patients supported by ECMO (Veno-Venous (VV) or Veno-Arterial (VA)) between April 2020 and March 2022 (Clinical-Trials.govIdentifier: NCT04397588) [10].The registry has been approved by the university hospital of Rennes ethics committee (n° 20.43).According to the French legislation, written consent was waived because of the observational design of the study that does not imply any modification of existing diagnostic or therapeutic strategies.After information, only non-opposition of patients or their legal representative was obtained for use of the data.The data collection methodology has been previously reported [10][11][12].Briefly, data were collected by research assistants from each patient's medical record using an electronic case report form.Automatic checks were generated for missing or incoherent data, and additional consistency tests were performed by data managers.Collected data included patient characteristics and comorbidities, management of COVID-related acute respiratory distress syndrome before ECMO cannulation, patient characteristics at ECMO cannulation and the day after, therapeutics, complications and patient outcomes on ECMO.Patient and ECMO management was at the discretion of each center (see Additional file 1: Table S1 for the definition of the main variables).The strategies for HAI prevention were left to the discretion of each ICU.Center experience was classified in two groups according to their experience in ECMO management before the pandemic: centers that managed more than 30 ECMO patients (≥ 30) annually were considered high volume, and those that managed fewer than 30 ECMO patients (< 30) annually were considered low volume [13].

Outcomes
Our primary outcome was HAI incidence while on ECMO (ECMO-AI).Secondary outcomes were incidences of VAP and BSI, ECMO-AI microbiology and antimicrobial resistance, ECMO-free days within 90 days of cannulation, ventilatory-free days within 90 days of cannulation, and in-hospital death.

Definitions
ECMO-AI included both VAP and BSI.An infection was classified as ECMO-AI if it developed during the ECMO run, was diagnosed 48 h or more after ICU admission and was not incubating upon admission.Diagnosis was made by treating physician.Within each subtype of ECMO-AI (VAP or BSI), only the first event was recorded.BSI was defined by a positive blood culture occurring 48 h or more after admission.For common skin contaminants, confirmation required two positive blood cultures drawn from separate puncture site [14].The diagnosis of VAP was considered in patients ventilated for 48 h or more, and up to 48 h after extubation.The criteria for the diagnosis of VAP followed the current French guidelines [15].Microorganisms identified as the cause of infection were categorized as multidrug-resistant organisms (MDRO) based on the European Society of Clinical Microbiology and Infectious Disease definition [16].The first epidemic wave (up to July 1st, 2020) was distinguished from the subsequent waves (from July 1st, 2020, to March 31, 2022).

Study design and population
For the present study, we analyzed all consecutive patients included in the registry with available data on acquired infections and hospital mortality.The analysis followed the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE) guidelines.

Statistical analysis
A statistical analysis plan was made prior to accessing the data.No a priori statistical power calculation was conducted.Categorical variables were expressed as number (percentage) and continuous variables as median and interquartile range.When appropriate, the chi-square test and the Fisher's exact test were used to compare categorical variables.The Mann-Whitney U test and the Wilcoxon test were used to compare continuous variables.Multiple imputations were used to replace missing data.Missing data were assumed to be missing at random and were dealt using "MICE" R package using Monte Carlo Markov chained equations to generate a dataset without missing values.The variable selected to predict missing values was those available before exposure to the risk of HAI (outcome variables not included).To evaluate the association between ECMO-AI and in-hospital mortality, we performed survival analyses using a multivariable proportional Cox model.Given that ECMO-AI developed during follow-up and was not present at cannulation, a multistate model was constructed [17].As a result, patients who developed an ECMO-AI were included twice.First, they were included in the group without ECMO-AI from cannulation to the onset of ECMO-AI.Then, they were censored from this group and included in the ECMO-AI group from the onset of ECMO-AI to discharge or death.Confounders entered in the multivariable model were defined a priori based on the existing ECMO and COVID-19 literature.All confounders that are associated with both ECMO-AI and death were included in the multivariable analysis.The set of potential confounders sufficient for adjustment was: center case volume, epidemic wave (first vs subsequent), age, diabetes, chronic respiratory failure, chronic kidney disease, malignancy (solid cancer or hemopathy), use of steroids before ECMO, use of non-steroidal anti-inflammatory drugs before ECMO, septic shock, antibiotic before cannulation, selective digestive decontamination, SOFA score at cannulation, type of ECMO support (VA vs VV), delay from hospitalization to ECMO cannulation.All tests were two-sided, and p < 0.05 was considered statistically significant.

Sensitivity analyses
We conducted a sensitivity analysis in which only ECMO-AI that developed after 48 h of ECMO run were considered.Patients with ECMO run < 48 h were excluded.We found that 157/546 patients (29%) acquired an ECMO-AI corresponding to an incidence rate of 21 ECMO-AI per 1000 ECMO-days.Outcomes were similar to those reported when considering the complete ECMO run (Additional file 1: Table S4).We also explored the potential for different patterns of early vs late ECMO-AI.We compared early (≤ 5 days from cannulation) and delayed (> 5 days from cannulation) ECMO-AI.Interestingly,

Table 1 (continued)
Results are presented as n(%) or median [interquartile range] ECMO extracorporeal membrane oxygenation, SOFA Sequential Organ Failure Assessment, PaO2 partial pressure of oxygen, FiO2 fraction of inspired oxygen Fig. 2 Cumulative ECMO-AI incidence there were no differences in microbiology nor in outcomes with respect for ECMO-AI timing (Additional file 1: Tables S5 and S6).

Discussion
This study reported the incidence of ECMO-AI (defined as VAP and BSI during ECMO support) at a nationwide level in a large multicenter cohort of COVID-19 patients supported by ECMO.The main results were as follows.
First, the incidence of ECMO-AI was high in this population, with 36% of patients and a rate of 27 ECMO-AI per 1000 ECMO days.Second, Enterobacteriaceae emerged as the main causative microorganisms.Third, we found a high incidence of Enterococcus spp. in BSI.Fourth, the incidence of MRSA and ESBL was low in our cohort.Finally, ECMO-AI were not associated with in-hospital death after multivariable analysis.The incidence of ECMO-AI is highly variable across published observational studies, including the ELSO registry, ranging from to 9 to 65% [18].Several factors contribute to this variability: the specific types of HAI considered in the analysis, the definitions employed and the underlying indications for ECMO.Diagnosing HAI on ECMO can be challenging, especially for cannulation site or catheter-associated urinary tract infections.Furthermore, distinguishing between colonization and infection may not always be definitive.Moreover, the mortality attributable to some infections, such as catheter-associated urinary tract infections, might be close to zero [19].Consequently, the present study focused on the most common ECMO-AI, BSI and VAP, both of which have been shown to be associated with poorer outcomes in critically ill patients [20].
Regarding microbiology, we report here the most extensive description to date of the micro-organisms responsible for ECMO-AI.As observed in previous ECMO case series and in other critical-care settings, Enterobacteriaceae were the main causative microorganisms, found in a third of BSI and almost half of VAP [1,14,21,22].Enterobacteriaceae also predominated in VAP and BSI in critically COVID-19 patients [2,3,5].Similarly, non-fermenting Gram-negative bacilli were highly represented in VAP (20%) in our cohort, in line with previous publications involving both COVID-19 and non-COVID-19 critically ill patients [1][2][3][4][5].
Strikingly, a high proportion of Enterococcus spp.were reported in BSI cases (25%), which was unexpected.Recently, the international EUROBACT-2 study, encompassing 2,927 hospital-acquired BSI episodes in non-COVID-19 patients, reported 314 Enterococcus spp.infections (11%), much lower than observed in the present study.Regarding non-COVID-19 ECMO patients, previous case series also reported lower proportions of Enterococcus spp.BSI, ranging from 15 to 20% [1,22].(2,4,23).In our cohort, the majority of critically ill COVID-19 patients received antimicrobial agents at admission, primarily cephalosporins, which may have promoted Enterococcus spp.proliferation and subsequent translocation [23,24].Furthermore, cross-transmission of Enterococcus spp.has been frequently observed, especially in high-activity ICUs as observed during the pandemic [25].Notably, this microorganism was only identified in a few cases (6%) of VAP.The implications of Enterococcus respiratory colonization, or even infection, remain controversial, and identification in respiratory sample is usually dismissed as contamination.Finally, MDRO were identified in nearly 20% of ECMO-AI in our cohort, with low levels of MRSA or ESBL.The EUROBACT-2 study reported a similar 22% rate of difficult-to-treat Gram-negative bacteria.However, in this study, the prevalence of resistant Gram-positive bacteria was higher at 37%, compared to 3% in our study [14].For critically ill COVID-19 patients, another large French cohort reported higher prevalence of MDRO with up to 30% resistance to 3rd Generation Cephalosporin and 17% of ESBL in Enterobacteriaceae and 11% of MRSA [4].Similarly, an European cohort of COVID-19 critically ill patients found high rates of MDR [26].Interestingly, we found a high incidence of fungal infection in our population, a proportion much higher than previously described in non-COVID-19 ECMO patients [27].
ECMO-AI were not found associated with mortality in our cohort, in line with previous study which reported that HAI do not modify outcome in the most severe patients such as those with ECMO support [28].Interestingly, ECMO-AI were associated with length of ECMO support, length of mechanical ventilation and length of ICU stay in bivariate analysis.This is likely related in part to the duration of exposure, i.e., longer ECMO exposure creates more opportunities for ECMO-AI.The other potential effect is that ECMO-AI may delay decannulation or extubation and prolong ICU stays.
Our study has several strengths.First, our cohort is one of the largest samples of COVID-19 patients supported by ECMO, providing detailed microbiological data on ECMO-HAI.Second, the participating centers cover a majority of the available ECMO sites in France.Third, the multicenter design facilitates the generalizability of our findings.Finally, the database's quality was regularly assessed by dedicated data managers.
However, there are limitations to consider.Despite wide representation, not all French ECMO centers were included, potentially introducing selection bias.Further, being an observational study, this study might be subject to information bias.The absence of specific HAI prevention recommendations might result in variations in the prevention practice across the ICUs.Additionally, as mentioned above, we focused on VAP and BSI and we do not provide information on catheter-related urinary tract infections or cannulation site infections.Moreover, the source of BSI was not recorded in our database.As both ECMO cannulation itself and patient illness severity at cannulation contribute to the development of ECMO-AI, we classified as ECMO-AI any infection occurring during the entire ECMO run.However, alternative definitions exist in the literature, which consider different exposure periods for ECMO-AI [29].Finally, most of our patients (75%) were included during the first wave of the pandemic in a context of work overload and bed shortage which may have resulted in difficulties to maintain adequate preventive measures.

Conclusions
In conclusion, our study demonstrated a high incidence of ECMO-AI in a nationwide multicenter cohort of patients with severe COVID-19 supported with ECMO.Enterobacteriaceae were the main causative microorganisms, with low rates of ESBL and MRSA.ECMO-AI were not found associated with in-hospital mortality.

Fig. 1
Fig. 1 Flow chart of ECMO patients included in the study

Table 1
Patient characteristics at the time of ECMO cannulation

Table 2
Microorganisms responsible for ECMO associated infections by infection siteResults are presented as n(%) ECMO extracorporeal membrane oxygenation, ESBL-PE extended-spectrum beta-lactamase-producing Enterobacteriaceae, MDR multidrug resistant *All VAP related to fungi were Pulmonary aspergillosis (Aspergillus fumigatus n = 3 and Aspergillus sp.n = 1) while all BSI related to fungi were Candidemia (Candida albicans n = 7 and Candida sp.n = 8)